Abstract

Gait phase detection is a new biometric method which is of great significance in gait correction, disease diagnosis, and exoskeleton assisted robots. Especially for the development of bone assisted robots, gait phase recognition is an indispensable key technology. In this study, the main characteristics of the gait phases were determined to identify each gait phase. A long short-term memory-deep neural network (LSTM-DNN) algorithm is proposed for gate detection. Compared with the traditional threshold algorithm and the LSTM, the proposed algorithm has higher detection accuracy for different walking speeds and different test subjects. During the identification process, the acceleration signals obtained from the acceleration sensors were normalized to ensure that the different features had the same scale. Principal components analysis (PCA) was used to reduce the data dimensionality and the processed data were used to create the input feature vector of the LSTM-DNN algorithm. Finally, the data set was classified using the Softmax classifier in the full connection layer. Different algorithms were applied to the gait phase detection of multiple male and female subjects. The experimental results showed that the gait-phase recognition accuracy and F-score of the LSTM-DNN algorithm are over 91.8% and 92%, respectively, which is better than the other three algorithms and also verifies the effectiveness of the LSTM-DNN algorithm in practice.

Highlights

  • Event detection in the medical field has been a trend in gait event detection in recent years [1].Gait analysis is of great help to therapists who wish to monitor the recovery of patients going through rehabilitation processes [2]

  • This paper proposes to use the LSTM-DNN to identify the gait phase, and compares it with other algorithms to verify the effectiveness of the algorithm

  • A gait phase detection method based on the LSTM-DNN algorithm was presented

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Summary

Introduction

Event detection in the medical field has been a trend in gait event detection in recent years [1]. Gait analysis is of great help to therapists who wish to monitor the recovery of patients going through rehabilitation processes [2]. Gait phase detection is an effective method to detect the morbid phases [4,5] and has great significance for the clinical rehabilitation of patients. Yan et al [9] proposed that gait phase detection can be used to facilitate the development of human auxiliary equipment, such as medical ankle joint (AF), hip joint (HK), and knee ankle joint (KAF) orthopedic devices, as well as exoskeletons and other equipment

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